International audienceA central issue in dimension reduction is choosing a sensible number of dimensions to be retained. This work demonstrates the surprising result of the asymptotic consistency of the maximum likelihood criterion for determining the intrinsic dimension of a dataset in an isotropic version of Probabilistic Principal Component Analysis (PPCA). Numerical experiments on simulated and real datasets show that the maximum likelihood criterion can actually be used in practice and outperforms existing intrinsic dimension selection criteria in various situations. This paper exhibits and outlines the limits of the maximum likelihood criterion. It leads to recommend the use of the AIC criterion in specific situations. A useful applic...
Principal component analysis is a widely used technique to perform dimension reduction. However, sel...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
International audienceMany statistical estimation techniques for high-dimensional or functional data...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
Probabilistic principal component analysis (PPCA) is currently one of the most used statistical tool...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
We present a novel probabilistic latent variable model to perform linear dimensionality reduction on...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
The numerical surge that characterizes the modern scientific era led to the rise of new kinds of dat...
The central inconvenient in Principal Component Analysis (PCA) is to choose correctly the number of ...
Principal component analysis is a widely used technique to perform dimension reduction. However, sel...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
International audienceMany statistical estimation techniques for high-dimensional or functional data...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceA central issue in dimension reduction is choosing a sensible number of dimens...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
31 pages, 7 figuresWe discuss the problem of estimating the number of principal components in Princi...
Probabilistic principal component analysis (PPCA) is currently one of the most used statistical tool...
Principal component analysis (PCA) is a widely used model for dimensionality reduction. In this pape...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
We present a novel probabilistic latent variable model to perform linear dimensionality reduction on...
Recently, the technique of principal component analysis (PCA) has been expressed as the maximum like...
The numerical surge that characterizes the modern scientific era led to the rise of new kinds of dat...
The central inconvenient in Principal Component Analysis (PCA) is to choose correctly the number of ...
Principal component analysis is a widely used technique to perform dimension reduction. However, sel...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
International audienceMany statistical estimation techniques for high-dimensional or functional data...